English

Joint cortical registration of geometry and function using semi-supervised learning

Image and Video Processing 2023-10-18 v4 Computer Vision and Pattern Recognition Neurons and Cognition

Abstract

Brain surface-based image registration, an important component of brain image analysis, establishes spatial correspondence between cortical surfaces. Existing iterative and learning-based approaches focus on accurate registration of folding patterns of the cerebral cortex, and assume that geometry predicts function and thus functional areas will also be well aligned. However, structure/functional variability of anatomically corresponding areas across subjects has been widely reported. In this work, we introduce a learning-based cortical registration framework, JOSA, which jointly aligns folding patterns and functional maps while simultaneously learning an optimal atlas. We demonstrate that JOSA can substantially improve registration performance in both anatomical and functional domains over existing methods. By employing a semi-supervised training strategy, the proposed framework obviates the need for functional data during inference, enabling its use in broad neuroscientific domains where functional data may not be observed. The source code of JOSA will be released to the public at https://voxelmorph.net.

Keywords

Cite

@article{arxiv.2303.01592,
  title  = {Joint cortical registration of geometry and function using semi-supervised learning},
  author = {Jian Li and Greta Tuckute and Evelina Fedorenko and Brian L. Edlow and Bruce Fischl and Adrian V. Dalca},
  journal= {arXiv preprint arXiv:2303.01592},
  year   = {2023}
}

Comments

B. Fischl and A. V. Dalca are co-senior authors with equal contribution. This work has been published in MIDL 2023 (https://openreview.net/forum?id=n9v_BuIcY7G) Medical Imaging with Deep Learning, Nashville, TN, Jul. 2023

R2 v1 2026-06-28T08:58:19.703Z